# Advances in Financial Machine Learning

, by De Prado, Marcos Lopez**Note:**Supplemental materials are not guaranteed with Rental or Used book purchases.

- ISBN: 9781119482086 | 1119482089
- Cover: Hardcover
- Copyright: 2/21/2018

**Learn to understand and implement the latest machine learning innovations to improve your investment performance**

Machine learning (ML) is changing virtually every aspect of our lives. Today, ML algorithms accomplish tasks that – until recently – only expert humans could perform. And finance is ripe for disruptive innovations that will transform how the following generations understand money and invest.

In the book, readers will learn how to:

- Structure big data in a way that is amenable to ML algorithms
- Conduct research with ML algorithms on big data
- Use supercomputing methods and back test their discoveries while avoiding false positives

*Advances in Financial Machine Learning* addresses real life problems faced by practitioners every day, and explains scientifically sound solutions using math, supported by code and examples. Readers become active users who can test the proposed solutions in their individual setting.

Written by a recognized expert and portfolio manager, this book will equip investment professionals with the groundbreaking tools needed to succeed in modern finance.

**DR. MARCOS LÓPEZ DE PRADO** is a principal at AQR Capital Management, and its head of machine learning. Marcos is also a research fellow at Lawrence Berkeley National Laboratory (U.S. Department of Energy, Office of Science). SSRN ranks him as one of the most-read authors in economics, and he has published dozens of scientific articles on machine learning and supercomputing in the leading academic journals. Marcos earned a PhD in financial economics (2003), a second PhD in mathematical finance (2011) from Universidad Complutense de Madrid, and is a recipient of Spain's National Award for Academic Excellence (1999). He completed his post-doctoral research at Harvard University and Cornell University, where he teaches a graduate course in financial machine learning at the School of Engineering. Marcos has an Erdös #2 and an Einstein #4 according to the American Mathematical Society.

About the Author xxi

PREAMBLE 1

**1 Financial Machine Learning as a Distinct Subject 3**

1.1 Motivation, 3

1.2 The Main Reason Financial Machine Learning Projects Usually Fail, 4

1.2.1 The Sisyphus Paradigm, 4

1.2.2 The Meta-Strategy Paradigm, 5

1.3 Book Structure, 6

1.3.1 Structure by Production Chain, 6

1.3.2 Structure by Strategy Component, 9

1.3.3 Structure by Common Pitfall, 12

1.4 Target Audience, 12

1.5 Requisites, 13

1.6 FAQs, 14

1.7 Acknowledgments, 18

Exercises, 19

References, 20

Bibliography, 20

**PART 1 DATA ANALYSIS 21**

**2 Financial Data Structures 23**

2.1 Motivation, 23

2.2 Essential Types of Financial Data, 23

2.2.1 Fundamental Data, 23

2.2.2 Market Data, 24

2.2.3 Analytics, 25

2.2.4 Alternative Data, 25

2.3 Bars, 25

2.3.1 Standard Bars, 26

2.3.2 Information-Driven Bars, 29

2.4 Dealing with Multi-Product Series, 32

2.4.1 The ETF Trick, 33

2.4.2 PCA Weights, 35

2.4.3 Single Future Roll, 36

2.5 Sampling Features, 38

2.5.1 Sampling for Reduction, 38

2.5.2 Event-Based Sampling, 38

Exercises, 40

References, 41

**3 Labeling 43**

3.1 Motivation, 43

3.2 The Fixed-Time Horizon Method, 43

3.3 Computing Dynamic Thresholds, 44

3.4 The Triple-Barrier Method, 45

3.5 Learning Side and Size, 48

3.6 Meta-Labeling, 50

3.7 How to Use Meta-Labeling, 51

3.8 The Quantamental Way, 53

3.9 Dropping Unnecessary Labels, 54

Exercises, 55

Bibliography, 56

**4 Sample Weights 59**

4.1 Motivation, 59

4.2 Overlapping Outcomes, 59

4.3 Number of Concurrent Labels, 60

4.4 Average Uniqueness of a Label, 61

4.5 Bagging Classifiers and Uniqueness, 62

4.5.1 Sequential Bootstrap, 63

4.5.2 Implementation of Sequential Bootstrap, 64

4.5.3 A Numerical Example, 65

4.5.4 Monte Carlo Experiments, 66

4.6 Return Attribution, 68

4.7 Time Decay, 70

4.8 Class Weights, 71

Exercises, 72

References, 73

Bibliography, 73

**5 Fractionally Differentiated Features 75**

5.1 Motivation, 75

5.2 The Stationarity vs. Memory Dilemma, 75

5.3 Literature Review, 76

5.4 The Method, 77

5.4.1 Long Memory, 77

5.4.2 Iterative Estimation, 78

5.4.3 Convergence, 80

5.5 Implementation, 80

5.5.1 Expanding Window, 80

5.5.2 Fixed-Width Window Fracdiff, 82

5.6 Stationarity with Maximum Memory Preservation, 84

5.7 Conclusion, 88

Exercises, 88

References, 89

Bibliography, 89

**PART 2 MODELLING 91**

**6 Ensemble Methods 93**

6.1 Motivation, 93

6.2 The Three Sources of Errors, 93

6.3 Bootstrap Aggregation, 94

6.3.1 Variance Reduction, 94

6.3.2 Improved Accuracy, 96

6.3.3 Observation Redundancy, 97

6.4 Random Forest, 98

6.5 Boosting, 99

6.6 Bagging vs. Boosting in Finance, 100

6.7 Bagging for Scalability, 101

Exercises, 101

References, 102

Bibliography, 102

**7 Cross-Validation in Finance 103**

7.1 Motivation, 103

7.2 The Goal of Cross-Validation, 103

7.3 Why K-Fold CV Fails in Finance, 104

7.4 A Solution: Purged K-Fold CV, 105

7.4.1 Purging the Training Set, 105

7.4.2 Embargo, 107

7.4.3 The Purged K-Fold Class, 108

7.5 Bugs in Sklearn’s Cross-Validation, 109

Exercises, 110

Bibliography, 111

**8 Feature Importance 113**

8.1 Motivation, 113

8.2 The Importance of Feature Importance, 113

8.3 Feature Importance with Substitution Effects, 114

8.3.1 Mean Decrease Impurity, 114

8.3.2 Mean Decrease Accuracy, 116

8.4 Feature Importance without Substitution Effects, 117

8.4.1 Single Feature Importance, 117

8.4.2 Orthogonal Features, 118

8.5 Parallelized vs. Stacked Feature Importance, 121

8.6 Experiments with Synthetic Data, 122

Exercises, 127

References, 127

**9 Hyper-Parameter Tuning with Cross-Validation 129**

9.1 Motivation, 129

9.2 Grid Search Cross-Validation, 129

9.3 Randomized Search Cross-Validation, 131

9.3.1 Log-Uniform Distribution, 132

9.4 Scoring and Hyper-parameter Tuning, 134

Exercises, 135

References, 136

Bibliography, 137

**PART 3 BACKTESTING 139**

**10 Bet Sizing 141**

10.1 Motivation, 141

10.2 Strategy-Independent Bet Sizing Approaches, 141

10.3 Bet Sizing from Predicted Probabilities, 142

10.4 Averaging Active Bets, 144

10.5 Size Discretization, 144

10.6 Dynamic Bet Sizes and Limit Prices, 145 Exercises, 148

References, 149

Bibliography, 149

**11 The Dangers of Backtesting 151**

11.1 Motivation, 151

11.2 Mission Impossible: The Flawless Backtest, 151

11.3 Even If Your Backtest Is Flawless, It Is Probably Wrong, 152

11.4 Backtesting Is Not a Research Tool, 153

11.5 A Few General Recommendations, 153

11.6 Strategy Selection, 155

Exercises, 158

References, 158

Bibliography, 159

**12 Backtesting through Cross-Validation 161**

12.1 Motivation, 161

12.2 The Walk-Forward Method, 161

12.2.1 Pitfalls of the Walk-Forward Method, 162

12.3 The Cross-Validation Method, 162

12.4 The Combinatorial Purged Cross-Validation Method, 163

12.4.1 Combinatorial Splits, 164

12.4.2 The Combinatorial Purged Cross-Validation Backtesting Algorithm, 165

12.4.3 A Few Examples, 165

12.5 How Combinatorial Purged Cross-Validation Addresses Backtest Overfitting, 166

Exercises, 167

References, 168

**13 Backtesting on Synthetic Data 169**

13.1 Motivation, 169

13.2 Trading Rules, 169

13.3 The Problem, 170

13.4 Our Framework, 172

13.5 Numerical Determination of Optimal Trading Rules, 173

13.5.1 The Algorithm, 173

13.5.2 Implementation, 174

13.6 Experimental Results, 176

13.6.1 Cases with Zero Long-Run Equilibrium, 177

13.6.2 Cases with Positive Long-Run Equilibrium, 180

13.6.3 Cases with Negative Long-Run Equilibrium, 182

13.7 Conclusion, 192

Exercises, 192

References, 193

**14 Backtest Statistics 195**

14.1 Motivation, 195

14.2 Types of Backtest Statistics, 195

14.3 General Characteristics, 196

14.4 Performance, 198

14.4.1 Time-Weighted Rate of Return, 198

14.5 Runs, 199

14.5.1 Returns Concentration, 199

14.5.2 Drawdown and Time under Water, 201

14.5.3 Runs Statistics for Performance Evaluation, 201

14.6 Implementation Shortfall, 202

14.7 Efficiency, 203

14.7.1 The Sharpe Ratio, 203

14.7.2 The Probabilistic Sharpe Ratio, 203

14.7.3 The Deflated Sharpe Ratio, 204

14.7.4 Efficiency Statistics, 205

14.8 Classification Scores, 206

14.9 Attribution, 207

Exercises, 208

References, 209

Bibliography, 209

**15 Understanding Strategy Risk 211**

15.1 Motivation, 211

15.2 Symmetric Payouts, 211

15.3 Asymmetric Payouts, 213

15.4 The Probability of Strategy Failure, 216

15.4.1 Algorithm, 217

15.4.2 Implementation, 217

Exercises, 219

References, 220

**16 Machine Learning Asset Allocation 221**

16.1 Motivation, 221

16.2 The Problem with Convex Portfolio Optimization, 221

16.3 Markowitz’s Curse, 222

16.4 From Geometric to Hierarchical Relationships, 223

16.4.1 Tree Clustering, 224

16.4.2 Quasi-Diagonalization, 229

16.4.3 Recursive Bisection, 229

16.5 A Numerical Example, 231

16.6 Out-of-Sample Monte Carlo Simulations, 234

16.7 Further Research, 236

16.8 Conclusion, 238

Appendices, 239

16.A.1 Correlation-based Metric, 239

16.A.2 Inverse Variance Allocation, 239

16.A.3 Reproducing the Numerical Example, 240

16.A.4 Reproducing the Monte Carlo Experiment, 242 Exercises, 244

References, 245

**PART 4 USEFUL FINANCIAL FEATURES 247**

**17 Structural Breaks 249**

17.1 Motivation, 249

17.2 Types of Structural Break Tests, 249

17.3 CUSUM Tests, 250

17.3.1 Brown-Durbin-Evans CUSUM Test on Recursive Residuals, 250

17.3.2 Chu-Stinchcombe-White CUSUM Test on Levels, 251

17.4 Explosiveness Tests, 251

17.4.1 Chow-Type Dickey-Fuller Test, 251

17.4.2 Supremum Augmented Dickey-Fuller, 252

17.4.3 Sub- and Super-Martingale Tests, 259

Exercises, 261

References, 261

**18 Entropy Features 263**

18.1 Motivation, 263

18.2 Shannon’s Entropy, 263

18.3 The Plug-in (or Maximum Likelihood) Estimator, 264

18.4 Lempel-Ziv Estimators, 265

18.5 Encoding Schemes, 269

18.5.1 Binary Encoding, 270

18.5.2 Quantile Encoding, 270

18.5.3 Sigma Encoding, 270

18.6 Entropy of a Gaussian Process, 271

18.7 Entropy and the Generalized Mean, 271

18.8 A Few Financial Applications of Entropy, 275

18.8.1 Market Efficiency, 275

18.8.2 Maximum Entropy Generation, 275

18.8.3 Portfolio Concentration, 275

18.8.4 Market Microstructure, 276

Exercises, 277

References, 278

Bibliography, 279

**19 Microstructural Features 281**

19.1 Motivation, 281

19.2 Review of the Literature, 281

19.3 First Generation: Price Sequences, 282

19.3.1 The Tick Rule, 282

19.3.2 The Roll Model, 282

19.3.3 High-Low Volatility Estimator, 283

19.3.4 Corwin and Schultz, 284

19.4 Second Generation: Strategic Trade Models, 286

19.4.1 Kyle’s Lambda, 286

19.4.2 Amihud’s Lambda, 288

19.4.3 Hasbrouck’s Lambda, 289

19.5 Third Generation: Sequential Trade Models, 290

19.5.1 Probability of Information-based Trading, 290

19.5.2 Volume-Synchronized Probability of Informed Trading, 292

19.6 Additional Features from Microstructural Datasets, 293

19.6.1 Distibution of Order Sizes, 293

19.6.2 Cancellation Rates, Limit Orders, Market Orders, 293

19.6.3 Time-Weighted Average Price Execution Algorithms, 294

19.6.4 Options Markets, 295

19.6.5 Serial Correlation of Signed Order Flow, 295

19.7 What Is Microstructural Information?, 295

Exercises, 296

References, 298

**PART 5 HIGH-PERFORMANCE COMPUTING RECIPES 301**

**20 Multiprocessing and Vectorization 303**

20.1 Motivation, 303

20.2 Vectorization Example, 303

20.3 Single-Thread vs. Multithreading vs. Multiprocessing, 304

20.4 Atoms and Molecules, 306

20.4.1 Linear Partitions, 306

20.4.2 Two-Nested Loops Partitions, 307

20.5 Multiprocessing Engines, 309

20.5.1 Preparing the Jobs, 309

20.5.2 Asynchronous Calls, 311

20.5.3 Unwrapping the Callback, 312

20.5.4 Pickle/Unpickle Objects, 313

20.5.5 Output Reduction, 313

20.6 Multiprocessing Example, 315

Exercises, 316

Reference, 317

Bibliography, 317

**21 Brute Force and Quantum Computers 319**

21.1 Motivation, 319

21.2 Combinatorial Optimization, 319

21.3 The Objective Function, 320

21.4 The Problem, 321

21.5 An Integer Optimization Approach, 321

21.5.1 Pigeonhole Partitions, 321

21.5.2 Feasible Static Solutions, 323

21.5.3 Evaluating Trajectories, 323

21.6 A Numerical Example, 325

21.6.1 Random Matrices, 325

21.6.2 Static Solution, 326

21.6.3 Dynamic Solution, 327

Exercises, 327

References, 328

**22 High-Performance Computational Intelligence and Forecasting Technologies 329**

*Kesheng Wu and Horst D. Simon*

22.1 Motivation, 329

22.2 Regulatory Response to the Flash Crash of 2010, 329

22.3 Background, 330

22.4 HPC Hardware, 331

22.5 HPC Software, 335

22.5.1 Message Passing Interface, 335

22.5.2 Hierarchical Data Format 5, 336

22.5.3 In Situ Processing, 336

22.5.4 Convergence, 337

22.6 Use Cases, 337

22.6.1 Supernova Hunting, 337

22.6.2 Blobs in Fusion Plasma, 338

22.6.3 Intraday Peak Electricity Usage, 340

22.6.4 The Flash Crash of 2010, 341

22.6.5 Volume-synchronized Probability of Informed Trading Calibration, 346

22.6.6 Revealing High Frequency Events with Non-uniform Fast Fourier Transform, 347

22.7 Summary and Call for Participation, 349

22.8 Acknowledgments, 350

References, 350

Index 353